Comparative Study of Vehicle Detection using SSD and Faster RCNN
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.10, No. 7)Publication Date: 2021-07-30
Authors : K. Mohan Krishna; A. Sowmya; D. Jerusha; D. Susmitha;
Page : 28-33
Keywords : Deep learning algorithms; Faster RCNN; Pre-trained Models; SSD; Traffic Management; Tensorflow; Vehicle Detection;
Abstract
With the recent developments in Artificial Intelligence, vehicle detection systems have become an essential part of many sectors like transport, automobile, security, law enforcement, and traffic management. This increased the requirement for an efficient system for vehicle detection. The main focus of our work is to find the best algorithm which can be used to design a vehicle detection system. For this, we compare two well-known deep learning algorithms which are Faster R-CNN and Single Shot Detector (SSD) algorithms. Both of the Pre-trained models of Tensorflow were tested on a dataset of hundred images with cars in them. It was found that Faster R-CNN is better with an accuracy score of 82.75 but was slower than SSD, whereas SSD had an accuracy score of 80.58 but was faster compared to Faster R-CNN.
Other Latest Articles
- RECONHECIMENTO DAQUELE QUE SEMPRE FIGUROU COMO PAI: NOVO MODELO DE RESPONSABILIDADE PARENTAL
- UMA ANÁLISE DOS ESPAÇOS ESCOLARES A PARTIR DAS ATIVIDADES DESENVOLVIDAS EM SALA DE AULA: UM ESTUDO DE CASO
- MAPEAMENTO DOS TEMAS PESQUISADOS NOS TRABALHOS DE CONCLUSÃO DE CURSO NO CENTRO UNIVERSITÁRIO DO ESPÍRITO SANTO – UNESC/CAMPUS COLATINA NO CURSO DE PEDAGOGIA NO PERÍODO DE 2015 A 2018
- PERCEPÇÃO DE GESTANTES E PUÉRPERAS SOBRE AS CARACTERÍSTICAS DE SUAS CONSULTAS DE PRÉ-NATAL: REVISÃO INTEGRATIVA
- A PREVALÊNCIA DE ALTERAÇÕES DO ÍNDICE TORNOZELO-BRAQUIAL EM PACIENTES HIPERTENSOS
Last modified: 2021-07-17 17:48:13